The focus of this research is to combine statistical and machine learning tools in application to a high-throughput biological data set on ionizing radiation response. The analyzed data consist of two gene expression sets obtained in studies of radiosensitive and radioresistant breast cancer patients undergoing radiotherapy. The data sets were similar in principle; however, the treatment dose differed. It is shown that introducing mathematical adjustments in data preprocessing, differentiation and trend testing, and classification, coupled with current biological knowledge, allows efficient data analysis and obtaining accurate results. The tools used to customize the analysis workflow were batch effect filtration with empirical Bayes models...
PURPOSE: The value of the genomic profiling by targeted gene-sequencing on radiation therapy respons...
Radiotherapy has become a popular and standard approach for treating cancer patients because it grea...
In this big-data era, like every other field, healthcare is also turning towards artificial intellig...
Abstract Background Radiation therapy is among the most effective and commonly used therapeutic moda...
Background: Gene signatures derived from transcriptomic data using machine learning methods have sho...
Analyzing the genetic activity of breast cancer survival for a specific type of therapy provides a b...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
The number of biomarker candidates is often much larger than the number of clinical patient data poi...
The number of biomarker candidates is often much larger than the number of clinical patient data poi...
With the development of precision medicine, searching for potential biomarkers plays a major role in...
Radiation oncology is uniquely positioned to harness the power of big data as vast amounts of data a...
Genomic profiles among different breast cancer survivors who received similar treatment may provide ...
The purpose of this study was to identify germline single nucleotide polymorphisms (SNPs) that optim...
Background: Gene signatures derived from transcriptomic data using machine learning methods have sho...
Contains fulltext : 153334.pdf (publisher's version ) (Open Access)Radiomics extra...
PURPOSE: The value of the genomic profiling by targeted gene-sequencing on radiation therapy respons...
Radiotherapy has become a popular and standard approach for treating cancer patients because it grea...
In this big-data era, like every other field, healthcare is also turning towards artificial intellig...
Abstract Background Radiation therapy is among the most effective and commonly used therapeutic moda...
Background: Gene signatures derived from transcriptomic data using machine learning methods have sho...
Analyzing the genetic activity of breast cancer survival for a specific type of therapy provides a b...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
The number of biomarker candidates is often much larger than the number of clinical patient data poi...
The number of biomarker candidates is often much larger than the number of clinical patient data poi...
With the development of precision medicine, searching for potential biomarkers plays a major role in...
Radiation oncology is uniquely positioned to harness the power of big data as vast amounts of data a...
Genomic profiles among different breast cancer survivors who received similar treatment may provide ...
The purpose of this study was to identify germline single nucleotide polymorphisms (SNPs) that optim...
Background: Gene signatures derived from transcriptomic data using machine learning methods have sho...
Contains fulltext : 153334.pdf (publisher's version ) (Open Access)Radiomics extra...
PURPOSE: The value of the genomic profiling by targeted gene-sequencing on radiation therapy respons...
Radiotherapy has become a popular and standard approach for treating cancer patients because it grea...
In this big-data era, like every other field, healthcare is also turning towards artificial intellig...